- π¬ Postdoctoral Researcher at SnT, Luxembourg
- π Two PhDs in Mathematics & Computer Science
- π Google Certified Data Analyst
- π‘ Specialized in Algebraic Graph Theory, Bioinformatics Pipelines, Graph Neural Networks, & Network Science
- π± Currently focusing on Automation in Bioinformatics, Graph Databases, & Scalable Systems for Biological Data
My skill set is a fusion of theoretical knowledge and practical expertise, particularly in bioinformatics:
π Programming Languages:
- Python: Advanced usage in bioinformatics, data science, and machine learning with libraries like TensorFlow, Keras, Scikit-learn, Pandas, NumPy, and Biopython.
- R: Utilized for statistical analysis and bioinformatics packages like
ggplot2
,dplyr
, andedgeR
.- SQL: Employed for managing biological databases and querying large datasets.
- Bash: Scripting for automating bioinformatics workflows on Linux platforms.
𧬠Bioinformatics & Computational Biology:
- Expertise in developing and automating bioinformatics pipelines for processing and analyzing metagenomic and microbiome data.
- Experience with graph-theoretical approaches for analyzing complex biological networks and applying Graph Neural Networks (GNNs) for predictive and descriptive analytics in omics data.
- Proficient in tools like Nextflow and Docker for containerizing and scaling bioinformatics workflows.
βοΈ Cloud Platforms:
- AWS & GCP: Applied cloud services for scalable storage and computation of large biological datasets.
π Data Analysis & Visualization:
- Proficient with Pandas and R for data manipulation and analysis in bioinformatics.
- Skilled in using visualization tools such as Matplotlib, Seaborn, ggplot2, and Cytoscape to derive insights from complex biological data.
ποΈ Graph Databases:
- Neo4j: Applied for storing and querying large-scale biological networks, facilitating advanced graph-based analyses.
π§ Development Tools:
- Git: For version control and collaborative research coding.
- Linux: Comfortable with the Linux environment for development and deployment of bioinformatics applications.
π€ Natural Language Processing (NLP):
- Experience with NLP techniques for analyzing scientific literature and extracting meaningful information from biological texts.
ποΈ Big Data Technologies:
- Utilized PySpark and Hadoop for handling and analyzing large-scale biological datasets in distributed environments.